Abstract

In the existing cancellable finger vein template protection schemes, the original biometric features cannot be well protected, which results in poor security. In addition, the performance of matching recognition performances after generating a cancellable template is poor. Therefore, a dual hashing index cancellable finger vein template protection based on Gaussian random mapping is proposed in this study. The scheme is divided into an enrollment stage and a verification stage. In the two stages, symmetric data encryption technology was used to generate encryption templates for matching. In the enrollment stage, first, the extracted finger vein features were duplicated to obtain an extended feature vector; then, this extended vector was uniformly and randomly permuted to obtain a permutation feature vector. The above two vectors were combined into a two-dimensional feature matrix. The extended and permuted feature vector made full use of the original biometric features and further enhanced the non-invertibility. Second, a random Gaussian projection vector with m×q dimensions was generated, and a random orthogonal projection matrix was generated by the Schmidt orthogonalization of the previously generated random vector. This approach accurately transferred the characteristics of the biometric features to another feature space and ensured that the biological template is revocable. Finally, the inner product of the two-dimensional feature vector and random orthogonal projection matrix was obtained and superimposed into a row. The dual index values of the largest and second largest values were repeated m times to obtain a hash code for matching. The secondary maximum value index was introduced to adjust the error generated by the random matrix, which improved the recognition rate of the algorithm. In the verification stage, another hash code for matching was generated based on symmetric data encryption technology, and then the two hash codes were cross matched to obtain the final matching result. The experimental results show that this scheme attains good recognition performance with the PolyU and SDUMLA-FV databases, that it meets the design standard for cancellable biometric identification, and that it is robust to security and privacy attacks.

Highlights

  • This study proposes a cancellable finger vein template protection scheme based on the GRP-based IoM authentication system framework [9], named the dual hashing index cancellable finger vein template based on Gaussian random mapping (GRP-DHI)

  • This section briefly introduces the work related to the proposed GRP-DHI scheme, including locality sensitive hashing (LSH), winner-takes-all (WTA) [20] hashing for data retrieval, random maxout features (RMF) [21] for data classification, and Index-of-Max hashing based on Gaussian random projection (GRP-based IoM)

  • This step increased the length and its randomly replaced x0 were combined up and down into a two-dimensional of the original biometric vector, copied and expanded the original limited biometric matrix, which made the similarity between intraclass finger vein feature vectors more vector, and increased the data of each sample eigenvector, to ensure the original bioprominent, and the random replacement of the feature vector was introduced to metric could be fully utilized in the subsequent transformation process

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Summary

Introduction

Multiple elements are mapped to the sam record the maximum hash index value, and the uniform random permutation-based IoM ment in the Bloom These techniques applied to iris and palmprint recognition in binary form and to face features in ity requirement andcan isberevocable using application-specific parameters T. With biometric multiple ran projections that record the maximum hash index value, and the uniform random pe tation-based IoM (URP-based IoM) method, which records the maximum index v These techniques can be applied to iris and palmprint recognition in binary form a Symmetry 2022, 14, 258 template protection schemes. We propose a dual hashing index, which uses the largest and second largest hashing indexes to generate two cancellable finger vein templates for matching This can solve the difference in the maximum hashing index of two samples of the same kind caused by the random matrix, thereby further improving the recognition performance. The presented experiments and discussions demonstrate that, when the proposed cancellable biometric template protection scheme is applied to the PolyU and SDUMLA-FV finger vein databases, it achieves higher recognition rates and offers greater security than other schemes do

Related Work
Locality Sensitive Hashing
Winner-Takes-All Hashing
Random Maxout Features
Index-of-Max Hashing Based on Gaussian Random Projection
Methodology
Extraction
Dual Hashing
Matching of GRP-DHI Hashed Codes
Generating
Parameters of GRP-DHI
Performance Evaluation
Method
Time Complexity and Simple Implementation
Privacy Analysis
Security Attack Analysis
Findings
Unlinkability Analysis
Full Text
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